Counterfactual Explanations via Locally-guided Sequential Algorithmic Recourse
Edward A. Small, Jeffrey N. Clark, Christopher J. McWilliams, Kacper, Sokol, Jeffrey Chan, Flora D. Salim, Raul Santos-Rodriguez

TL;DR
This paper introduces LocalFACE, a privacy-preserving, locally-guided algorithmic recourse method for generating feasible counterfactual explanations that are customizable, robust, and model-agnostic.
Contribution
It proposes a novel local, data-efficient approach for counterfactual explanations that enhances privacy, robustness, and interpretability over existing gradient-driven and data-driven methods.
Findings
LocalFACE generates feasible counterfactuals with high success rates.
The method preserves user privacy by limiting data access.
It improves robustness against adversarial attacks.
Abstract
Counterfactuals operationalised through algorithmic recourse have become a powerful tool to make artificial intelligence systems explainable. Conceptually, given an individual classified as y -- the factual -- we seek actions such that their prediction becomes the desired class y' -- the counterfactual. This process offers algorithmic recourse that is (1) easy to customise and interpret, and (2) directly aligned with the goals of each individual. However, the properties of a "good" counterfactual are still largely debated; it remains an open challenge to effectively locate a counterfactual along with its corresponding recourse. Some strategies use gradient-driven methods, but these offer no guarantees on the feasibility of the recourse and are open to adversarial attacks on carefully created manifolds. This can lead to unfairness and lack of robustness. Other methods are data-driven,…
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Taxonomy
TopicsAdversarial Robustness in Machine Learning · Explainable Artificial Intelligence (XAI) · Artificial Intelligence in Healthcare and Education
